AI-annotated medical image showing enhanced tumour, tumour core and edema regions. Credit: Monash University

Published recently in Nature Machine Intelligence, research addressed the limited availability of human annotated, or labeled, medical images by using an adversarial, or competitive, learning approach against unlabeled data.

This research, by Monash University faculties of Engineering and IT, could advance the field of medical image analysis for and other health experts.

Ph.D. candidate Himashi Peiris of the Faculty of Engineering, said the had set out to create a competition between the two components of a "dual-view" AI system.

"One part of the AI system tries to mimic how radiologists read medical images by labeling them, while the other part of the system judges the quality of the AI-generated labeled scans by benchmarking them against the limited labeled scans provided by radiologists," said Peiris.

"Traditionally radiologists and other annotate, or label, medical scans by hand highlighting specific areas of interest, such as tumors or other lesions. These labels provide guidance or supervision for training AI models.

"This method relies on the subjective interpretation of individuals, is time-consuming and prone to errors and extended waiting periods for patients seeking treatments."

The availability of large-scale annotated medical image datasets is often limited, as it requires significant effort, time and expertise to annotate many images manually.

The developed by the Monash researchers allows multiple AI models to leverage the unique advantages of labeled and unlabeled data, and learn from each other's predictions to help improve overall accuracy.

"Across the three publicly accessible medical datasets, utilizing a 10% labeled data setting, we achieved an average improvement of 3% compared to the most recent state-of-the-art approach under identical conditions," said Peiris.

"Our algorithm has produced groundbreaking results in semi-supervised learning, surpassing previous state-of-the-art methods. It demonstrates remarkable performance even with limited annotations, unlike algorithms that rely on large volumes of annotated data.

"This enables AI models to make more informed decisions, validate their initial assessments, and uncover more accurate diagnoses and treatment decisions."

The next phase of the research will focus on expanding the application to work with different types of and developing a dedicated end-to-end product that radiologists can use in their practices.

More information: Himashi Peiris et al, Uncertainty-guided dual-views for semi-supervised volumetric medical image segmentation, Nature Machine Intelligence (2023). DOI: 10.1038/s42256-023-00682-w

Journal information: Nature Machine Intelligence

Provided by Monash University